| Literature DB >> 29769042 |
Farzad Khalvati1, Junjie Zhang1, Audrey G Chung2, Mohammad Javad Shafiee2, Alexander Wong3, Masoom A Haider1.
Abstract
BACKGROUND: Quantitative radiomic features provide a plethora of minable data extracted from multi-parametric magnetic resonance imaging (MP-MRI) which can be used for accurate detection and localization of prostate cancer. While most cancer detection algorithms utilize either voxel-based or region-based feature models, the complexity of prostate tumour phenotype in MP-MRI requires a more sophisticated framework to better leverage available data and exploit a priori knowledge in the field.Entities:
Keywords: Computer-aided detection; Multi-parametric MRI; Prostate cancer
Mesh:
Year: 2018 PMID: 29769042 PMCID: PMC5956891 DOI: 10.1186/s12880-018-0258-4
Source DB: PubMed Journal: BMC Med Imaging ISSN: 1471-2342 Impact factor: 1.930
Fig. 1The proposed framework for automatic multi-scale prostate cancer detection (MPCaD)
Summary of feature groups in proposed Radiomics-Driven Statistical Textural Distinctiveness (RD-STD) [14]
| Feature group | Number of features | Description |
|---|---|---|
| Textural (1 | 4 | Mean, Standard deviation, Kurtosis, Skewness |
| Energy, contrast, correlation, variance, inverse difference moment normalized, | ||
| Textural (2 | 72 | Sum average, sum variance, entropy, sum entropy, difference entropy, |
| (18 in each of 4 directions) | Information measure of correlation, homogeneity, autocorrelation | |
| Difference variance, dissimilarity, cluster shade, cluster prominence, maximum probability | ||
| Gabor filters | 12 | 3 scales and 4 orientations |
| Kirsch filters | 8 | 8 directions |
| Total | 96 | All features |
Summary of feature groups in proposed Radiomics-Driven Feature Model (RD-FM) [21]
| Feature group | Number of features | Description |
|---|---|---|
| Morphology | 3 | Area regularity (1), Perimeter regularity (2) |
| Asymmetry | 4 | Region bilateral symmetry (4) |
| Physiology | 26 | |
| Textural (1 | 7 | Mean, median, standard deviation, minimum, maximum, kurtosis, skewness |
| Energy, contrast, correlation, variance, inverse difference moment normalized, sum average, | ||
| Textural (2 | 19 | Sum variance, entropy, sum entropy, difference entropy, normalized entropy, |
| Information measure of correlation, homogeneity, difference variance, | ||
| Autocorrelation, dissimilarity, cluster shade, cluster prominence, maximum probability | ||
| Size | 1 | Size of region |
| Total | 34 | All features |
Fig. 2Block diagram of the proposed radiomics-driven feature model (RD-FM).
Description of the prostate imaging data
| Modality | DFOV ( | Resolution ( | TE (ms) | TR (ms) |
|---|---|---|---|---|
| T2w | 22×22 | 0.49×0.49×3 | 110 | 4687 |
| DWI | 20×20 | 1.56×1.56×3 | 61 | 6178 |
| CDI | 20×20 | 1.56×1.56×3 | 61 | 6178 |
Evaluation results of each stage in MPCaD (Results are shown with 95% confidence interval)
| Procedure | Feature Selection Criteria | Sensitivity | Specificity | Accuracy |
|---|---|---|---|---|
| RD-STD | - | 0.07 [-0.02 0.16] | 0.17 [0.08 0.27] | |
| RD-FM | Specificity | 0.79 [0.67 0.91] | ||
| Sensitivity | 0.86 [0.81 0.91] | 0.84 [0.78 0.90] | ||
| AUC | 0.83 [0.71 0.95] | 0.83 [0.76 0.90] | 0.83 [0.78 0.89] | |
|
| 0.82 | 0.86 | 0.84 | |
| rADC-CRF | Specificity | 0.79 [0.63 0.95] | ||
| Sensitivity | 0.87 [0.82 0.92] | 0.85 [0.80 0.90] | ||
| AUC | 0.83 [0.66 0.99] | 0.88 [0.83 0.93] | 0.85 [0.81 0.89] | |
|
| 0.82 |
|
|
The bold font shows the best result
Fig. 3MPCaD framework results. Legend denotes the result metrics and the grouping in x axis (e.g., AUC) shows the feature selection criteria used for experiments
Fig. 4Visual comparison of identified prostate tumour candidates in each stage of the pipeline for 3 cases. Left to right: radiologist’s markings (green), results produced by RD-STD (yellow), RD-FM (red), rADC-CRF (blue), and all results shown in one image
Performance comparison with previous work
| Method | Sensitivity | Specificity | Accuracy |
|---|---|---|---|
| MPCaD |
|
|
|
| MAPS [ | 0.51 | 0.81 | 0.70 |
| Peng et al. [ | 0.78 | 0.75 | 0.74 |
The bold font shows the best result